首页> 外文会议>2011 International Symposium on Electronic System Design >DCSFPSS Assisted Morphological Approach for Grey Twill Fabric Defect Detection and Defect Area Measurement for Fabric Grading
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DCSFPSS Assisted Morphological Approach for Grey Twill Fabric Defect Detection and Defect Area Measurement for Fabric Grading

机译:DCSFPSS辅助形态学方法用于灰色斜纹织物缺陷检测和织物分级的缺陷面积测量

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This paper proposes a new optimal morphological filter design using DC suppressed Fourier power spectrum sum (DCSFPSS) plot as a major technique to extract the texture periodicity features of textile fabrics. Periodicity is further used to assist the selection of size of structuring element(SE) for morphological operation(MO) to detect grey twill fabric defects. The performance of the scheme is evaluated on number of homogeneous twill grey fabric images with loose weft and stitch type of defects. Computation of number of defects, area of each defect and total defect area in a given fabric image is estimated. Then a simple binary based defect search algorithm is adopted to determine the presence of defects. The performance parameter of the proposed algorithm is firstly obtained in terms of accuracy of correct defect detection (ACD) which is found to be 98% for stitch and 94.7% for loose weft defect samples of two twill grey fabric classes. Secondly, the recognition of defect area less than 1$mm ^2$, which has not been reported in the literature yet, was possible using this algorithm. Further we propose to use this method to grade the fabric based on standard systems adopted for classifying the fabric. The details of the experimentation and the results thereof are presented in this paper.
机译:本文提出了一种新的最优形态滤波器设计,该算法以直流抑制傅立叶功率谱和(DCSFPSS)图为主要技术来提取织物的织构周期性特征。周期性还用于辅助选择结构元素(SE)的大小,以进行形态学操作(MO)以检测灰色斜纹织物的缺陷。该方案的性能在具有均匀纬线和针迹类型缺陷的均质斜纹坯布图像数量上进行评估。估计给定织物图像中的缺陷数量,每个缺陷的面积和总缺陷面积的计算。然后采用一种简单的基于二进制的缺陷搜索算法来确定缺陷的存在。首先根据正确缺陷检测(ACD)的准确度获得所提出算法的性能参数,发现其正确性为两种斜纹坯布类别的针迹为98%,松散纬纱缺陷样本为94.7%。其次,使用该算法可以识别小于1 $ mm ^ 2 $的缺陷区域,这在文献中尚未报道。此外,我们建议使用此方法基于对织物进行分类的标准系统对织物进行分级。本文介绍了实验的细节及其结果。

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